【2h】

Memory and mental time travel in humans and social robots

机译:人类和社交机器人中的记忆和心理时间旅行

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摘要

From neuroscience, brain imaging and the psychology of memory, we are beginning to assemble an integrated theory of the brain subsystems and pathways that allow the compression, storage and reconstruction of memories for past events and their use in contextualizing the present and reasoning about the future—mental time travel (MTT). Using computational models, embedded in humanoid robots, we are seeking to test the sufficiency of this theoretical account and to evaluate the usefulness of brain-inspired memory systems for social robots. In this contribution, we describe the use of machine learning techniques—Gaussian process latent variable models—to build a multimodal memory system for the iCub humanoid robot and summarize results of the deployment of this system for human–robot interaction. We also outline the further steps required to create a more complete robotic implementation of human-like autobiographical memory and MTT. We propose that generative memory models, such as those that form the core of our robot memory system, can provide a solution to the symbol grounding problem in embodied artificial intelligence.This article is part of the theme issue ‘From social brains to social robots: applying neurocognitive insights to human–robot interaction’.
机译:从神经科学,大脑成像和记忆心理学开始,我们开始整合大脑子系统和通路的综合理论,从而允许对过去事件进行记忆的压缩,存储和重建,并将其用于对当下和未来进行情境化—精神时间旅行(MTT)。我们正在使用嵌入在人形机器人中的计算模型来测试该理论的充分性,并评估以大脑为灵感的记忆系统对社交机器人的有用性。在本文中,我们描述了使用机器学习技术(高斯过程潜变量模型)来为iCub类人机器人构建多模式存储系统,并总结了该系统用于人机交互的结果。我们还概述了创建更完整的类似人的自传体记忆和MTT的机器人实现所需的其他步骤。我们建议生成记忆模型(例如构成我们机器人记忆系统核心的模型)可以为嵌入式人工智能中的符号接地问题提供解决方案。本文是主题``从社交大脑到社交机器人:将神经认知见解应用于人机交互”。

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